# SOME DESCRIPTIVE TITLE.
# Copyright (C) 2021, PaddleNLP
# This file is distributed under the same license as the PaddleNLP package.
# FIRST AUTHOR <EMAIL@ADDRESS>, 2022.
#
#, fuzzy
msgid ""
msgstr ""
"Project-Id-Version: PaddleNLP \n"
"Report-Msgid-Bugs-To: \n"
"POT-Creation-Date: 2022-03-18 21:31+0800\n"
"PO-Revision-Date: YEAR-MO-DA HO:MI+ZONE\n"
"Last-Translator: FULL NAME <EMAIL@ADDRESS>\n"
"Language-Team: LANGUAGE <LL@li.org>\n"
"MIME-Version: 1.0\n"
"Content-Type: text/plain; charset=utf-8\n"
"Content-Transfer-Encoding: 8bit\n"
"Generated-By: Babel 2.9.0\n"

#: ../source/paddlenlp.transformers.bert.modeling.rst:2
msgid "modeling"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM:1
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice:1
#: paddlenlp.transformers.bert.modeling.BertForPretraining:1
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering:1
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification:1
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification:1
#: paddlenlp.transformers.bert.modeling.BertModel:1
msgid "基类：:class:`paddlenlp.transformers.bert.modeling.BertPretrainedModel`"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:1
msgid "The bare BERT Model transformer outputting raw hidden-states."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:3
msgid ""
"This model inherits from "
":class:`~paddlenlp.transformers.model_utils.PretrainedModel`. Refer to "
"the superclass documentation for the generic methods."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:6
msgid ""
"This model is also a Paddle `paddle.nn.Layer "
"<https://www.paddlepaddle.org.cn/documentation "
"/docs/en/api/paddle/fluid/dygraph/layers/Layer_en.html>`__ subclass. Use "
"it as a regular Paddle Layer and refer to the Paddle documentation for "
"all matter related to general usage and behavior."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM
#: paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward
#: paddlenlp.transformers.bert.modeling.BertForPretraining
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward
#: paddlenlp.transformers.bert.modeling.BertModel
#: paddlenlp.transformers.bert.modeling.BertModel.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingCriterion
#: paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward
msgid "参数"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:10
msgid ""
"Vocabulary size of `inputs_ids` in `BertModel`. Also is the vocab size of"
" token embedding matrix. Defines the number of different tokens that can "
"be represented by the `inputs_ids` passed when calling `BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:13
msgid ""
"Dimensionality of the embedding layer, encoder layer and pooler layer. "
"Defaults to `768`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:15
msgid "Number of hidden layers in the Transformer encoder. Defaults to `12`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:17
msgid ""
"Number of attention heads for each attention layer in the Transformer "
"encoder. Defaults to `12`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:20
msgid ""
"Dimensionality of the feed-forward (ff) layer in the encoder. Input "
"tensors to ff layers are firstly projected from `hidden_size` to "
"`intermediate_size`, and then projected back to `hidden_size`. Typically "
"`intermediate_size` is larger than `hidden_size`. Defaults to `3072`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:25
msgid ""
"The non-linear activation function in the feed-forward layer. "
"``\"gelu\"``, ``\"relu\"`` and any other paddle supported activation "
"functions are supported. Defaults to `\"gelu\"`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:29
msgid ""
"The dropout probability for all fully connected layers in the embeddings "
"and encoder. Defaults to `0.1`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:32
msgid ""
"The dropout probability used in MultiHeadAttention in all encoder layers "
"to drop some attention target. Defaults to `0.1`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:35
msgid ""
"The maximum value of the dimensionality of position encoding, which "
"dictates the maximum supported length of an input sequence. Defaults to "
"`512`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:38
msgid "The vocabulary size of `token_type_ids`. Defaults to `16`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:41
msgid ""
"The standard deviation of the normal initializer. Defaults to 0.02.  .. "
"note::     A normal_initializer initializes weight matrices as normal "
"distributions.     See :meth:`BertPretrainedModel.init_weights()` for how"
" weights are initialized in `BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:41
msgid "The standard deviation of the normal initializer. Defaults to 0.02."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:45
msgid ""
"A normal_initializer initializes weight matrices as normal distributions."
" See :meth:`BertPretrainedModel.init_weights()` for how weights are "
"initialized in `BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:48
msgid "The index of padding token in the token vocabulary. Defaults to `0`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel:51
msgid ""
"The non-linear activation function in the pooling layer. Defaults to "
"`\"tanh\"`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:1
msgid "The BertModel forward method, overrides the `__call__()` special method."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:3
msgid ""
"Indices of input sequence tokens in the vocabulary. They are numerical "
"representations of tokens that build the input sequence. Its data type "
"should be `int64` and it has a shape of [batch_size, sequence_length]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:7
msgid ""
"Segment token indices to indicate different portions of the inputs. "
"Selected in the range ``[0, type_vocab_size - 1]``. If `type_vocab_size` "
"is 2, which means the inputs have two portions. Indices can either be 0 "
"or 1:  - 0 corresponds to a *sentence A* token, - 1 corresponds to a "
"*sentence B* token.  Its data type should be `int64` and it has a shape "
"of [batch_size, sequence_length]. Defaults to `None`, which means we "
"don't add segment embeddings."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:7
msgid ""
"Segment token indices to indicate different portions of the inputs. "
"Selected in the range ``[0, type_vocab_size - 1]``. If `type_vocab_size` "
"is 2, which means the inputs have two portions. Indices can either be 0 "
"or 1:"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:12
msgid "0 corresponds to a *sentence A* token,"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:13
msgid "1 corresponds to a *sentence B* token."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:15
msgid ""
"Its data type should be `int64` and it has a shape of [batch_size, "
"sequence_length]. Defaults to `None`, which means we don't add segment "
"embeddings."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:18
msgid ""
"Indices of positions of each input sequence tokens in the position "
"embeddings. Selected in the range ``[0, max_position_embeddings - 1]``. "
"Shape as `(batch_size, num_tokens)` and dtype as int64. Defaults to "
"`None`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:22
msgid ""
"Mask used in multi-head attention to avoid performing attention on to "
"some unwanted positions, usually the paddings or the subsequent "
"positions. Its data type can be int, float and bool. When the data type "
"is bool, the `masked` tokens have `False` values and the others have "
"`True` values. When the data type is int, the `masked` tokens have `0` "
"values and the others have `1` values. When the data type is float, the "
"`masked` tokens have `-INF` values and the others have `0` values. It is "
"a tensor with shape broadcasted to `[batch_size, num_attention_heads, "
"sequence_length, sequence_length]`. Defaults to `None`, which means "
"nothing needed to be prevented attention to."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:31
msgid "Whether to return the output of each hidden layers. Defaults to `False`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward
#: paddlenlp.transformers.bert.modeling.BertModel.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward
msgid "返回"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:35
msgid ""
"Returns tuple (`sequence_output`, `pooled_output`) or (`encoder_outputs`,"
" `pooled_output`).  With the fields:  - `sequence_output` (Tensor):     "
"Sequence of hidden-states at the last layer of the model.     It's data "
"type should be float32 and its shape is [batch_size, sequence_length, "
"hidden_size].  - `pooled_output` (Tensor):     The output of first token "
"(`[CLS]`) in sequence.     We \"pool\" the model by simply taking the "
"hidden state corresponding to the first token.     Its data type should "
"be float32 and its shape is [batch_size, hidden_size].  - "
"`encoder_outputs` (List(Tensor)):     A list of Tensor containing hidden-"
"states of the model at each hidden layer in the Transformer encoder.     "
"The length of the list is `num_hidden_layers`.     Each Tensor has a data"
" type of float32 and its shape is [batch_size, sequence_length, "
"hidden_size]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:35
msgid ""
"Returns tuple (`sequence_output`, `pooled_output`) or (`encoder_outputs`,"
" `pooled_output`)."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:14
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:10
#: paddlenlp.transformers.bert.modeling.BertModel.forward:37
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:16
msgid "With the fields:"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:41
msgid "`sequence_output` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:40
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:1
msgid ""
"Sequence of hidden-states at the last layer of the model. It's data type "
"should be float32 and its shape is [batch_size, sequence_length, "
"hidden_size]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:46
msgid "`pooled_output` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:44
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:4
msgid ""
"The output of first token (`[CLS]`) in sequence. We \"pool\" the model by"
" simply taking the hidden state corresponding to the first token. Its "
"data type should be float32 and its shape is [batch_size, hidden_size]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:50
msgid "`encoder_outputs` (List(Tensor)):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertModel.forward:49
msgid ""
"A list of Tensor containing hidden-states of the model at each hidden "
"layer in the Transformer encoder. The length of the list is "
"`num_hidden_layers`. Each Tensor has a data type of float32 and its shape"
" is [batch_size, sequence_length, hidden_size]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward
#: paddlenlp.transformers.bert.modeling.BertModel.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward
msgid "返回类型"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:15
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:17
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:22
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:17
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:17
#: paddlenlp.transformers.bert.modeling.BertModel.forward:55
msgid "示例"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainedModel:1
msgid "基类：:class:`paddlenlp.transformers.model_utils.PretrainedModel`"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainedModel:1
msgid ""
"An abstract class for pretrained BERT models. It provides BERT related "
"`model_config_file`, `resource_files_names`, "
"`pretrained_resource_files_map`, `pretrained_init_configuration`, "
"`base_model_prefix` for downloading and loading pretrained models. See "
":class:`~paddlenlp.transformers.model_utils.PretrainedModel` for more "
"details."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainedModel.init_weights:1
msgid "Initialization hook"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining:1
msgid "Bert Model with pretraining tasks on top."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM:3
#: paddlenlp.transformers.bert.modeling.BertForPretraining:3
msgid "An instance of :class:`BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:1
#: paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:3
#: paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:5
#: paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:7
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward:1
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward:3
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward:5
#: paddlenlp.transformers.bert.modeling.BertForPretraining.forward:7
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:3
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:5
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:3
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:5
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:7
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:9
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:3
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:5
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:7
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:9
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads:3
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads:5
msgid "See :class:`BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:9
msgid "See :class:`BertPretrainingHeads`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:12
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:14
msgid ""
"Returns tuple (``prediction_scores``, ``seq_relationship_score``).  With "
"the fields:  - `prediction_scores` (Tensor):     The scores of masked "
"token prediction. Its data type should be float32.     If "
"`masked_positions` is None, its shape is [batch_size, sequence_length, "
"vocab_size].     Otherwise, its shape is [batch_size, mask_token_num, "
"vocab_size].  - `seq_relationship_score` (Tensor):     The scores of next"
" sentence prediction.     Its data type should be float32 and its shape "
"is [batch_size, 2]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:12
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:14
msgid "Returns tuple (``prediction_scores``, ``seq_relationship_score``)."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:19
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:21
msgid "`prediction_scores` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:17
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:19
msgid ""
"The scores of masked token prediction. Its data type should be float32. "
"If `masked_positions` is None, its shape is [batch_size, sequence_length,"
" vocab_size]. Otherwise, its shape is [batch_size, mask_token_num, "
"vocab_size]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:22
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:24
msgid "`seq_relationship_score` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForPretraining.forward:22
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:24
msgid ""
"The scores of next sentence prediction. Its data type should be float32 "
"and its shape is [batch_size, 2]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion:1
#: paddlenlp.transformers.bert.modeling.BertPretrainingHeads:1
msgid "基类：:class:`paddle.fluid.dygraph.layers.Layer`"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion:1
msgid ""
"Vocabulary size of `inputs_ids` in `BertModel`. Defines the number of "
"different tokens that can be represented by the `inputs_ids` passed when "
"calling `BertModel`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:1
msgid ""
"The scores of masked token prediction. Its data type should be float32. "
"If `masked_positions` is None, its shape is [batch_size, sequence_length,"
" vocab_size]. Otherwise, its shape is [batch_size, mask_token_num, "
"vocab_size]"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:5
msgid ""
"The scores of next sentence prediction. Its data type should be float32 "
"and its shape is [batch_size, 2]"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:8
msgid ""
"The labels of the masked language modeling, its dimensionality is equal "
"to `prediction_scores`. Its data type should be int64. If "
"`masked_positions` is None, its shape is [batch_size, sequence_length, "
"1]. Otherwise, its shape is [batch_size, mask_token_num, 1]"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:12
msgid ""
"The labels of the next sentence prediction task, the dimensionality of "
"`next_sentence_labels` is equal to `seq_relation_labels`. Its data type "
"should be int64 and its shape is [batch_size, 1]"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:16
msgid ""
"The scale of masked tokens. Used for the normalization of masked language"
" modeling loss. If it is a `Tensor`, its data type should be int64 and "
"its shape is equal to `prediction_scores`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingCriterion.forward:20
msgid ""
"The pretraining loss, equals to the sum of `masked_lm_loss` plus the mean"
" of `next_sentence_loss`. Its data type should be float32 and its shape "
"is [1]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingHeads:1
msgid "Perform language modeling task and next sentence classification task."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingHeads:7
msgid "Activation function used in the language modeling task."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingHeads:9
msgid ""
"Decoding weights used to map hidden_states to logits of the masked token "
"prediction. Its data type should be float32 and its shape is [vocab_size,"
" hidden_size]. Defaults to `None`, which means use the same weights of "
"the embedding layer."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertPretrainingHeads.forward:8
msgid ""
"A tensor indicates positions to be masked in the position embedding. Its "
"data type should be int64 and its shape is [batch_size, mask_token_num]. "
"`mask_token_num` is the number of masked tokens. It should be no bigger "
"than `sequence_length`. Defaults to `None`, which means we output hidden-"
"states of all tokens in masked token prediction."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForSequenceClassification:1
msgid ""
"Bert Model with a linear layer on top of the output layer, designed for "
"sequence classification/regression tasks like GLUE tasks."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice:4
#: paddlenlp.transformers.bert.modeling.BertForQuestionAnswering:4
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification:4
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification:4
msgid "An instance of BertModel."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForSequenceClassification:6
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification:6
msgid "The number of classes. Defaults to `2`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForSequenceClassification:8
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification:8
msgid ""
"The dropout probability for output of BERT. If None, use the same value "
"as `hidden_dropout_prob` of `BertModel` instance `bert`. Defaults to "
"None."
msgstr ""

#: of
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:1
msgid ""
"The BertForSequenceClassification forward method, overrides the "
"__call__() special method."
msgstr ""

#: of
#: paddlenlp.transformers.bert.modeling.BertForSequenceClassification.forward:12
msgid ""
"Returns tensor `logits`, a tensor of the input text classification "
"logits. Shape as `[batch_size, num_classes]` and dtype as float32."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForTokenClassification:1
msgid ""
"Bert Model with a linear layer on top of the hidden-states output layer, "
"designed for token classification tasks like NER tasks."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:1
msgid ""
"The BertForTokenClassification forward method, overrides the __call__() "
"special method."
msgstr ""

#: of
#: paddlenlp.transformers.bert.modeling.BertForTokenClassification.forward:12
msgid ""
"Returns tensor `logits`, a tensor of the input token classification "
"logits. Shape as `[batch_size, sequence_length, num_classes]` and dtype "
"as `float32`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering:1
msgid ""
"Bert Model with a linear layer on top of the hidden-states output to "
"compute `span_start_logits` and `span_end_logits`, designed for question-"
"answering tasks like SQuAD."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering:6
msgid ""
"The dropout probability for output of BERT. If None, use the same value "
"as `hidden_dropout_prob` of `BertModel` instance `bert`. Defaults to "
"`None`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:1
msgid ""
"The BertForQuestionAnswering forward method, overrides the __call__() "
"special method."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:8
msgid ""
"Returns tuple (`start_logits`, `end_logits`).  With the fields:  - "
"`start_logits` (Tensor):     A tensor of the input token classification "
"logits, indicates the start position of the labelled span.     Its data "
"type should be float32 and its shape is [batch_size, sequence_length].  -"
" `end_logits` (Tensor):     A tensor of the input token classification "
"logits, indicates the end position of the labelled span.     Its data "
"type should be float32 and its shape is [batch_size, sequence_length]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:8
msgid "Returns tuple (`start_logits`, `end_logits`)."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:14
msgid "`start_logits` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:13
msgid ""
"A tensor of the input token classification logits, indicates the start "
"position of the labelled span. Its data type should be float32 and its "
"shape is [batch_size, sequence_length]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:17
msgid "`end_logits` (Tensor):"
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForQuestionAnswering.forward:17
msgid ""
"A tensor of the input token classification logits, indicates the end "
"position of the labelled span. Its data type should be float32 and its "
"shape is [batch_size, sequence_length]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice:1
msgid ""
"Bert Model with a linear layer on top of the hidden-states output layer, "
"designed for multiple choice tasks like RocStories/SWAG tasks."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice:6
msgid "The number of choices. Defaults to `2`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice:8
msgid ""
"The dropout probability for output of Bert. If None, use the same value "
"as `hidden_dropout_prob` of `BertModel` instance `bert`. Defaults to "
"None."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:1
msgid ""
"The BertForMultipleChoice forward method, overrides the __call__() "
"special method."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:3
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:5
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:7
#: paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:9
msgid ""
"See :class:`BertModel` and shape as [batch_size, num_choice, "
"sequence_length]."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMultipleChoice.forward:12
msgid ""
"Returns tensor `reshaped_logits`, a tensor of the multiple choice "
"classification logits. Shape as `[batch_size, num_choice]` and dtype as "
"`float32`."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM:1
msgid "Bert Model with a `masked language modeling` head on top."
msgstr ""

#: of paddlenlp.transformers.bert.modeling.BertForMaskedLM.forward:10
msgid ""
"Returns tensor `prediction_scores`, The scores of masked token "
"prediction. Its data type should be float32 and shape is [batch_size, "
"sequence_length, vocab_size]."
msgstr ""

